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Explainable Few-shot Knowledge Tracing

About

Knowledge tracing (KT), aiming to mine students' mastery of knowledge by their exercise records and predict their performance on future test questions, is a critical task in educational assessment. While researchers achieved tremendous success with the rapid development of deep learning techniques, current knowledge tracing tasks fall into the cracks from real-world teaching scenarios. Relying heavily on extensive student data and solely predicting numerical performances differs from the settings where teachers assess students' knowledge state from limited practices and provide explanatory feedback. To fill this gap, we explore a new task formulation: Explainable Few-shot Knowledge Tracing. By leveraging the powerful reasoning and generation abilities of large language models (LLMs), we then propose a cognition-guided framework that can track the student knowledge from a few student records while providing natural language explanations. Experimental results from three widely used datasets show that LLMs can perform comparable or superior to competitive deep knowledge tracing methods. We also discuss potential directions and call for future improvements in relevant topics.

Haoxuan Li, Jifan Yu, Yuanxin Ouyang, Zhuang Liu, Wenge Rong, Juanzi Li, Zhang Xiong• 2024

Related benchmarks

TaskDatasetResultRank
Knowledge TracingAssistments 2009
AUC0.611
40
Knowledge TracingASSIST12
AUC66.79
24
Knowledge TracingDBE-KT22
Accuracy63.5
24
Knowledge TracingKnowledge Tracing Datasets
AUC61.1
7
Knowledge Tracing Report Quality EvaluationEedi
Explainability2.7
4
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